HappyFeet: Challenges in Building an Automated Dance Recognition and Assessment Tool

A. Faridee, S. R. Ramamurthy, Nirmalya Roy
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引用次数: 16

Abstract

In this paper, we discuss our experience in building an automated dance assessment tool with IMU and IoT devices and highlight the major challenges of such an endeavor. In a typical dance classroom scenario, where the students frequently outnumber their instructors, such a system can add an immense value to both parties by providing systematic breakdown of the dance moves, comparing the dance moves between the students and the instructors, and pinpointing the places for improvement in an autonomous way. Along that direction, our prototypical work, HappyFeet [1], showcases our initial attempts of developing such an intelligent Dance Activity Recognition (DAR) system. Our CNN based Body Sensor Network proves more effective (by ≈7% margin at 94.20%) at accurately recognizing the micro-steps of the dance activities than traditional feature engineering approaches. These metrics are derived by purposely evaluating the setup on a dance form known for its gentle, smooth and subtle limb movements. In this paper, we articulate how our proposed DAR framework will be generalizable for diverse dance styles involving very pronounced movements, human body kinematics and energy profiles.
快乐的脚:建立一个自动舞蹈识别和评估工具的挑战
在本文中,我们讨论了我们在使用IMU和物联网设备构建自动化舞蹈评估工具方面的经验,并强调了这种努力的主要挑战。在典型的舞蹈课堂场景中,学生人数经常超过教师,这样的系统可以提供系统的舞蹈动作分解,比较学生和教师之间的舞蹈动作,并以自主的方式确定需要改进的地方,从而为双方增加巨大的价值。沿着这个方向,我们的原型作品,HappyFeet[1],展示了我们开发这种智能舞蹈活动识别(DAR)系统的初步尝试。与传统的特征工程方法相比,我们基于CNN的身体传感器网络在准确识别舞蹈活动的微步骤方面更有效(≈7%的边际率为94.20%)。这些指标是通过有意地评估舞蹈形式的设置而得出的,这种舞蹈形式以其轻柔、流畅和微妙的肢体运动而闻名。在本文中,我们阐明了我们提出的DAR框架将如何推广到不同的舞蹈风格,包括非常明显的动作,人体运动学和能量分布。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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